Bowen Zhou, Bing Xiang, et al.
SSST 2008
Data sparseness in building statistical language models for spoken dialog systems is a critical problem. In a previous paper we addressed this issue by exploiting the World Wide Web (WWW) and other external data sources in a financial transaction domain. In this paper, we evaluate the impact of improved speech recognition due to Web-based Language model (WebLM) on the speech understanding performance in a new domain. As speech understanding system we use a natural language call-routing system. Experimental results show that the WebLM improves the speech recognition performance by 1.7% to 2.7% across varying amounts of in-domain data. The improvements in action classification (AC) performance were modest yet consistent ranging from 0.3% to 0.8%. © 2005 IEEE.
Bowen Zhou, Bing Xiang, et al.
SSST 2008
Hagen Soltau, George Saon, et al.
IEEE Transactions on Audio, Speech and Language Processing
Ruhi Sarikaya, Yuqing Gao, et al.
ICASSP 2004
Fu-Hua Liu, Yuqing Gao
ISCSLP 2004